Litcius/Paper detail

Uncertainty-aware remaining useful life prediction for predictive maintenance using deep learning

Quy Le Xuan, Yeremia Gunawan Adhisantoso, Marco Munderloh, Jörn Östermann

2023Procedia CIRP16 citationsDOIOpen Access PDF

Abstract

Reliably predicting Remaining Useful Life (RUL) is crucial for reducing asset maintenance costs. Deep learning emerges as a powerful data-driven method capable of predicting RUL based on historical operating data. However, standard deep learning tools typically do not account for the uncertainty inherent in prediction tasks. This paper presents an uncertainty-aware approach that predicts not only the RUL but also the associated confidence interval, capturing both aleatoric and epistemic uncertainty. The proposed approach is evaluated on publicly available datasets of aircraft turbofan engines, showing its ability to estimate accurate RUL and well-calibrated uncertainties that are robust to out-of-distribution data.

Topics & Concepts

TurbofanUncertainty quantificationArtificial intelligenceDeep learningComputer scienceMachine learningAsset (computer security)Interval (graph theory)PrognosticsData miningEngineeringMathematicsCombinatoricsAutomotive engineeringComputer securityMachine Fault Diagnosis TechniquesReliability and Maintenance OptimizationFault Detection and Control Systems